Enabling Cognitive Smart Cities Using Big Data and Machine Learning: Approaches and Challenges
Mehdi Mohammadi, Ala Al-Fuqaha

TL;DR
This paper discusses leveraging semi-supervised deep reinforcement learning to utilize big data effectively in smart cities, addressing challenges of data dynamism, unlabeled data, and providing a scalable, hierarchical learning framework for improved city services.
Contribution
It introduces a novel three-level semi-supervised deep reinforcement learning framework tailored for smart cities, enhancing data utilization and service intelligence.
Findings
Proposes a scalable, hierarchical learning framework for smart city data.
Highlights the importance of semi-supervised learning for unlabeled big data.
Demonstrates improved smart city service performance through deep reinforcement learning.
Abstract
The development of smart cities and their fast-paced deployment is resulting in the generation of large quantities of data at unprecedented rates. Unfortunately, most of the generated data is wasted without extracting potentially useful information and knowledge because of the lack of established mechanisms and standards that benefit from the availability of such data. Moreover, the high dynamical nature of smart cities calls for new generation of machine learning approaches that are flexible and adaptable to cope with the dynamicity of data to perform analytics and learn from real-time data. In this article, we shed the light on the challenge of under utilizing the big data generated by smart cities from a machine learning perspective. Especially, we present the phenomenon of wasting unlabeled data. We argue that semi-supervision is a must for smart city to address this challenge. We…
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